FL-MHSM: Spatially-adaptive Fusion and Ensemble Learning for Flood-Landslide Multi-Hazard Susceptibility Mapping at Regional Scale
Aswathi Mundayatt, Jaya Sreevalsan-Nair

TL;DR
This study introduces a deep learning framework combining spatial partitioning, fusion techniques, and a Mixture of Experts model to improve multi-hazard susceptibility mapping for floods and landslides at regional scales.
Contribution
It presents a novel spatially adaptive deep learning workflow that effectively models cross-hazard dependence and uncertainty in multi-hazard susceptibility mapping.
Findings
MoE outperformed other models in predictive accuracy.
EF improved flood recall and reduced Brier score.
Spatial heterogeneity influences hazard susceptibility factors.
Abstract
Existing multi-hazard susceptibility mapping (MHSM) studies often rely on spatially uniform models, treat hazards independently, and provide limited representation of cross-hazard dependence and uncertainty. To address these limitations, this study proposes a deep learning (DL) workflow for joint flood-landslide multi-hazard susceptibility mapping (FL-MHSM) that combines two-level spatial partitioning, probabilistic Early Fusion (EF), a tree-based Late Fusion (LF) baseline, and a soft-gating Mixture of Experts (MoE) model, with MoE serving as final predictive model. The proposed design preserves spatial heterogeneity through zonal partitions and enables data-parallel large-area prediction using overlapping lattice grids. In Kerala, EF remained competitive with LF, improving flood recall from 0.816 to 0.840 and reducing Brier score from 0.092 to 0.086, while MoE provided strongest…
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